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OALib Journal期刊
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Research on Teaching Reform of Mechanical and Electronic Specialty Based on Robot Education

DOI: 10.4236/oalib.1107741, PP. 1-9

Subject Areas: Educational Reform, Mechanical Engineering

Keywords: Machinery and Electronics, Robotics, The Teaching Reform

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Abstract

Mechanical electronic technology represented by robot technology is very important in many fields such as military, civilian and extensive application, how under the new era, combined with the current development status and trend of scientific, complete mechanical and electrical professional teaching is very important, the article analyses the core technology of the robot and finds the combining site of robot technology and teaching and research. By using the method of higher education psychology, this paper analyzes the learning characteristics and psychological characteristics of college students, and puts forward that robot education should be deeply applied to the teaching of mechanical and electronic engineering specialty, and that robot technology should be deeply combined with mechanical and electronic specialty education, so as to improve the undergraduate mechanical and electronic specialty education learning initiative and efficiency.

Cite this paper

Xu, X. (2021). Research on Teaching Reform of Mechanical and Electronic Specialty Based on Robot Education. Open Access Library Journal, 8, e7741. doi: http://dx.doi.org/10.4236/oalib.1107741.

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